2021
DOI: 10.1155/2021/8831458
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Crowd Counting Based on Multiresolution Density Map and Parallel Dilated Convolution

Abstract: The current crowd counting tasks rely on a fully convolutional network to generate a density map that can achieve good performance. However, due to the crowd occlusion and perspective distortion in the image, the directly generated density map usually neglects the scale information and spatial contact information. To solve it, we proposed MDPDNet (Multiresolution Density maps and Parallel Dilated convolutions’ Network) to reduce the influence of occlusion and distortion on crowd estimation. This network is com… Show more

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